Motifs and ontology are used in medical database for identifying and diagnose of the disease. A motif is a pattern network used for analysis of the disease. It also identifies the pattern of the signal. Based on the motifs the disease can be predicted, classified and diagnosed. Ontology is knowledge based representation, and it is used as a user interface to diagnose the disease. Ontology is also used by medical expert to diagnose and analyse the disease easily. Gene ontology is used to express the gene of the disease.
B. Lavanya and T. Madhumitha, Department of Computer Science, University of Madras, Chennai, India.
Motifs, Gene Network, Ontology Classification, Disease diagnosis, Data Mining
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